理解科学应用的尺度相关软误差行为

Gokcen Kestor, I. Peng, R. Gioiosa, S. Krishnamoorthy
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引用次数: 7

摘要

在大规模系统中分析应用程序故障行为是一项耗时且耗费资源的工作。目前,研究人员需要全面执行故障注入活动,以了解软错误对应用程序的影响,以及这些错误是否会导致静默数据损坏。时间和资源需求极大地限制了目前可以进行的弹性研究的范围。在这项工作中,我们提出了一种基于在小规模进行的简化实验集来模拟大规模应用程序故障行为的方法。我们采用机器学习技术,使用一组可以在小规模并行执行的实验来准确地建模应用程序故障行为。我们的方法大大减少了需要进行的故障注入实验的数量和规模,为大规模研究应用程序故障行为提供了一种有效的方法。通过小规模的实验表明,我们的方法可以准确地模拟大规模的应用程序故障行为。在某些情况下,我们可以对运行在4096个核上的并行应用程序的故障行为进行建模,基于单核上的实验,准确率约为90%。
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Understanding scale-Dependent soft-Error Behavior of Scientific Applications
Analyzing application fault behavior on large-scale systems is time-consuming and resource-demanding. Currently, researchers need to perform fault injection campaigns at full scale to understand the effects of soft errors on applications and whether these faults result in silent data corruption. Both time and resource requirements greatly limit the scope of the resilience studies that can be currently performed. In this work, we propose a methodology to model application fault behavior at large scale based on a reduced set of experiments performed at small scale. We employ machine learning techniques to accurately model application fault behavior using a set of experiments that can be executed in parallel at small scale. Our methodology drastically reduces the set and the scale of the fault injection experiments to be performed and provides a validated methodology to study application fault behavior at large scale. We show that our methodology can accurately model application fault behavior at large scale by using only small scale experiments. In some cases, we can model the fault behavior of a parallel application running on 4,096 cores with about 90% accuracy based on experiments on a single core.
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